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Showing papers by "Herbert Edelsbrunner published in 2010"


Journal ArticleDOI
TL;DR: Two stability results for Lipschitz functions on triangulable, compact metric spaces are proved and applications of both to problems in systems biology are considered.
Abstract: We prove two stability results for Lipschitz functions on triangulable, compact metric spaces and consider applications of both to problems in systems biology. Given two functions, the first result is formulated in terms of the Wasserstein distance between their persistence diagrams and the second in terms of their total persistence.

316 citations


Journal ArticleDOI
TL;DR: In this article, the authors report all intersecting pairs of a set of rectangles in d-dimensional space and find a solution which is optimal in time and space for planar rectangles and reasonable in higher dimensions.
Abstract: The study begun in Part I is completed by providing an algorithm which reports all intersecting pairs of a set of rectangles in d dimensions This approach yields a solution which is optimal in time and space for planar rectangles and reasonable in higher dimensions

111 citations


Journal ArticleDOI
TL;DR: A fast hierarchical algorithm is given using the dual complexes of oct-tree approximations of the function to study 3-dimensional images of plant root systems and the structure of the homology classes and their robustness, over all level and interlevel sets, can be visualized by a triangular diagram of dots.
Abstract: We are interested in 3-dimensional images given as arrays of voxels with intensity values. Extending these values to a continuous function, we study the robustness of homology classes in its level and interlevel sets, that is, the amount of perturbation needed to destroy these classes. The structure of the homology classes and their robustness, over all level and interlevel sets, can be visualized by a triangular diagram of dots obtained by computing the extended persistence of the function. We give a fast hierarchical algorithm using the dual complexes of oct-tree approximations of the function. In addition, we show that for balanced oct-trees, the dual complexes are geometrically realized in R3 and can thus be used to construct level and interlevel sets. We apply these tools to study 3-dimensional images of plant root systems.

107 citations


Book ChapterDOI
31 Aug 2010
TL;DR: In this article, the authors introduce a new class of quantitative languages, defined by mean-payoff automaton expressions, which is robust and decidable: it is closed under the four pointwise operations, and all decision problems are decidable for this class.
Abstract: Quantitative languages are an extension of boolean languages that assign to each word a real number. Mean-payoff automata are finite automata with numerical weights on transitions that assign to each infinite path the long-run average of the transition weights. When the mode of branching of the automaton is deterministic, nondeterministic, or alternating, the corresponding class of quantitative languages is not robust as it is not closed under the pointwise operations of max, min, sum, and numerical complement. Nondeterministic and alternating mean-payoff automata are not decidable either, as the quantitative generalization of the problems of universality and language inclusion is undecidable. We introduce a new class of quantitative languages, defined by mean-payoff automaton expressions, which is robust and decidable: it is closed under the four pointwise operations, and we show that all decision problems are decidable for this class. Mean-payoff automaton expressions subsume deterministic meanpayoff automata, and we show that they have expressive power incomparable to nondeterministic and alternating mean-payoff automata. We also present for the first time an algorithm to compute distance between two quantitative languages, and in our case the quantitative languages are given as mean-payoff automaton expressions.

39 citations


Book ChapterDOI
06 Sep 2010
TL;DR: The robustness of a level set homology class of a function f : X → R as the magnitude of a perturbation necessary to kill the class is defined, using a connection to extended persistent homology.
Abstract: We define the robustness of a level set homology class of a function f : X → R as the magnitude of a perturbation necessary to kill the class. Casting this notion into a group theoretic framework, we compute the robustness for each class, using a connection to extended persistent homology. The special case X = R3 has ramifications in medical imaging and scientific visualization.

15 citations


Book ChapterDOI
TL;DR: A new class of quantitative languages is introduced, defined by mean-payoff automaton expressions, which is robust and decidable: it is closed under the four pointwise operations, and it is shown that all decision problems are decidable for this class.
Abstract: Quantitative languages are an extension of boolean languages that assign to each word a real number. Mean-payoff automata are finite automata with numerical weights on transitions that assign to each infinite path the long-run average of the transition weights. When the mode of branching of the automaton is deterministic, nondeterministic, or alternating, the corresponding class of quantitative languages is not robust as it is not closed under the pointwise operations of max, min, sum, and numerical complement. Nondeterministic and alternating mean-payoff automata are not decidable either, as the quantitative generalization of the problems of universality and language inclusion is undecidable. We introduce a new class of quantitative languages, defined by mean-payoff automaton expressions, which is robust and decidable: it is closed under the four pointwise operations, and we show that all decision problems are decidable for this class. Mean-payoff automaton expressions subsume deterministic mean-payoff automata, and we show that they have expressive power incomparable to nondeterministic and alternating mean-payoff automata. We also present for the first time an algorithm to compute distance between two quantitative languages, and in our case the quantitative languages are given as mean-payoff automaton expressions.

8 citations


Book ChapterDOI
23 Aug 2010
TL;DR: This paper extends the results of prior work on homology and robustness to a non-uniform error model in which perturbations vary in their magnitude across the domain.
Abstract: Using ideas from persistent homology, the robustness of a level set of a real-valued function is defined in terms of the magnitude of the perturbation necessary to kill the classes. Prior work has shown that the homology and robustness information can be read off the extended persistence diagram of the function. This paper extends these results to a non-uniform error model in which perturbations vary in their magnitude across the domain.

6 citations